# D3 difference between ordinal and linear scales

``````var xScale = d3.scale.ordinal().domain([0, d3.max(data)]).rangeRoundBands([0, w], .1);
var yScale = d3.scale.linear().domain([0, data.length]).range([h, 0]);
``````

I'm confused about when to use ordinal or linear scale in D3.

Below is what I've discovered from the API doc, still bit lost... if anyone can help, it would be much appreciated.

# ordinal(x)

Given a value x in the input domain, returns the corresponding value in the output range.

If the range was specified explicitly (as by range, but not rangeBands, rangeRoundBands or rangePoints), and the given value x is not in the scale’s domain, then x is implicitly added to the domain; subsequent invocations of the scale given the same value x will return the same value y from the range.

# d3.scale.linear()

Constructs a new linear scale with the default domain [0,1] and the default range [0,1]. Thus, the default linear scale is equivalent to the identity function for numbers; for example linear(0.5) returns 0.5.

• The linear scale will interpolate between input values, whereas the ordinal scale will not. Apr 22, 2015 at 3:26
• @LarsKotthoff can you please provide some example?
– Bill
Apr 22, 2015 at 6:40
• There is actually an example for this in the docs, the `linear(0.5)`. Apr 22, 2015 at 17:15

As for Ordinal Scales:

Ordinal scales have a discrete domain, such as a set of names or categories.

An ordinal scale's values must be coercible to a string, and the stringified version of the domain value uniquely identifies the corresponding range value.

So, as an example, a domain of an ordinal scale may contain names, like so:

``````var ordinalScale = d3.scale.ordinal()
.domain(['Alice', 'Bob'])
.range([0, 100]);

ordinalScale('Alice'); // 0
ordinalScale('Bob'); // 100
``````

Notice how all values are strings. They cannot be interpolated. What is between 'Alice' and 'Bob'? I don't know. Neither does D3.

Now, as for Quantitative Scales (e.g. Linear Scales):

Quantitative scales have a continuous domain, such as the set of real numbers, or dates.

As an example, you can construct the following scale:

``````var linearScale = d3.scale.linear()
.domain([0, 10])
.range([0, 100]);

linearScale(0); // 0
linearScale(5); // 50
linearScale(10); // 100
``````

Notice how D3 is able to interpolate 5 even if we haven't specified it explicitly in the domain.

Take a look at this jsfiddle to see the above code in action.

• Omg... you should write the d3 API doc, brilliant, totally make sense. Thanks heaps :)
– Bill
Apr 22, 2015 at 23:26
• If you have more than 2 items in your domain, i.e. `['Alice', 'Bob', 'Carl']` then you may need to use `rangePoints` instead of `range`. Jul 20, 2017 at 13:42
• Can you please explain this without words such as "discrete domain", "quantitative scale", "interpolated", "coercible" and "domain" so us lowly earthlings can understand it? Or at least define them. Not all of us have a mathematical background. Mar 17, 2018 at 5:40
• Hello @dthree, I'm sorry it wasn't clear. These are the terms often used in D3 documentation, and in the API. I assumed that the reader is familiar with their meaning. I don't have a mathematical background either, but reading about domain of a function was a good starting point and helped me a lot in understanding these terms and D3 itself.
– Oleg
Mar 17, 2018 at 8:49
• Very helpful, thanks. However it seems D3 does think to know what is between Alice and Bob. For example, AlicePointFive is 0, while AlicePointSeven is 1 (see updated fiddle) . Any explanation of the logic behind those attributions?
– sc28
May 16, 2018 at 14:32

In D3.js scales transform a number from the domain to the range. For a linear scale the domain will be a continuous variable, with an unlimited range of values, which can be then transformed to a continuous range. For ordinal scales there will be a discrete domain, for example months of the year where there are limited range of possible values that may be ordered but aren't continuous. The API docs on Github can probably explain the difference better than I have

OK, we can start learning it with using both with the same data to see differences(I'm using d3 v4), imagine we have the data below with using `ordinal` and `linear` scales:

``````const data = [1, 2, 3, 4, 5];

const scaleLinear = d3.scaleLinear()
.domain([0, Math.max(...data)]).range([1, 100]);

const scaleOrdinal = d3.scaleOrdinal()
.domain(data).range(['one', 'two', 'three', 'four', 'five']);
``````

Now we start calling them to see the result:

``````scaleLinear(1); //20
scaleOrdinal(1); //one

scaleLinear(2); //40
scaleOrdinal(2); //two

scaleLinear(5); //100
scaleOrdinal(5); //five
``````

Look at the functions and the results we get, as you see in the ordinal one we map the data to our range, while in the linear one we stretch to the range, so in these cases for example scaleLinear(1) will return 20... our domain max is 100 and 100 divided by 5 is equal 20, so scaleLinear(1) is 20 and scaleLinear(2) is 40...

But as you see, scaleOrdinal(1) is map to the array in the range, so it's equal to one and scaleOrdinal(2) it's equal to two...

So that's how you can use these scales, scaleLinear is useful for many things including present the scale on page, but scaleOrdinal more useful for getting the data in order, that's how it's explained in the documentation:

# d3.scaleLinear() <>

Constructs a new continuous scale with the unit domain [0, 1], the unit range [0, 1], the default interpolator and clamping disabled. Linear scales are a good default choice for continuous quantitative data because they preserve proportional differences. Each range value y can be expressed as a function of the domain value x: y = mx + b.

d3.scaleOrdinal([range]) <>

Constructs a new ordinal scale with an empty domain and the specified range. If a range is not specified, it defaults to the empty array; an ordinal scale always returns undefined until a non-empty range is defined.

Also this is a good example from d3 in depth using both ordinal and linear scales at the same time:

``````var myData = ['Jan', 'Feb', 'Mar', 'Apr', 'May', 'Jun', 'Jul', 'Aug', 'Sep', 'Oct', 'Nov', 'Dec']

var linearScale = d3.scaleLinear()
.domain([0, 11])
.range([0, 600]);

var ordinalScale = d3.scaleOrdinal()
.domain(myData)
.range(['black', '#ccc', '#ccc']);

d3.select('#wrapper')
.selectAll('text')
.data(myData)
.enter()
.append('text')
.attr('x', function(d, i) {
return linearScale(i);
})
.text(function(d) {
return d;
})
.style('fill', function(d) {
return ordinalScale(d);
});``````
``````body {
font-family: "Helvetica Neue", Helvetica, sans-serif;
font-size: 14px;
color: #333;
}``````
``````<script src="https://cdnjs.cloudflare.com/ajax/libs/d3/4.2.2/d3.min.js"></script>

<svg width="800" height="60">
<g id="wrapper" transform="translate(100, 40)">
</g>
</svg>``````